4,189 research outputs found

    Spatial calibration of an optical see-through head-mounted display

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    We present here a method for calibrating an optical see-through Head Mounted Display (HMD) using techniques usually applied to camera calibration (photogrammetry). Using a camera placed inside the HMD to take pictures simultaneously of a tracked object and features in the HMD display, we could exploit established camera calibration techniques to recover both the intrinsic and extrinsic properties of the~HMD (width, height, focal length, optic centre and principal ray of the display). Our method gives low re-projection errors and, unlike existing methods, involves no time-consuming and error-prone human measurements, nor any prior estimates about the HMD geometry

    Calibration Methods for Head-Tracked 3D Displays

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    Head-tracked 3D displays can provide a compelling 3D effect, but even small inaccuracies in the calibration of the participant’s viewpoint to the display can disrupt the 3D illusion. We propose a novel interactive procedure for a participant to easily and accurately calibrate a head-tracked display by visually aligning patterns across a multi-screen display. Head-tracker measurements are then calibrated to these known viewpoints. We conducted a user study to evaluate the effectiveness of different visual patterns and different display shapes. We found that the easiest to align shape was the spherical display and the best calibration pattern was the combination of circles and lines. We performed a quantitative camera-based calibration of a cubic display and found visual calibration outperformed manual tuning and generated viewpoint calibrations accurate to within a degree. Our work removes the usual, burdensome step of manual calibration when using head-tracked displays and paves the way for wider adoption of this inexpensive and effective 3D display technology

    Off-Line Camera-Based Calibration for Optical See-Through Head-Mounted Displays

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    In recent years, the entry into the market of self contained optical see-through headsets with integrated multi-sensor capabilities has led the way to innovative and technology driven augmented reality applications and has encouraged the adoption of these devices also across highly challenging medical and industrial settings. Despite this, the display calibration process of consumer level systems is still sub-optimal, particularly for those applications that require high accuracy in the spatial alignment between computer generated elements and a real-world scene. State-of-the-art manual and automated calibration procedures designed to estimate all the projection parameters are too complex for real application cases outside laboratory environments. This paper describes an off-line fast calibration procedure that only requires a camera to observe a planar pattern displayed on the see-through display. The camera that replaces the user’s eye must be placed within the eye-motion-box of the see-through display. The method exploits standard camera calibration and computer vision techniques to estimate the projection parameters of the display model for a generic position of the camera. At execution time, the projection parameters can then be refined through a planar homography that encapsulates the shift and scaling effect associated with the estimated relative translation from the old camera position to the current user’s eye position. Compared to classical SPAAM techniques that still rely on the human element and to other camera based calibration procedures, the proposed technique is flexible and easy to replicate in both laboratory environments and real-world settings

    Optical See-Through Head Mounted Display Direct Linear Transformation Calibration Robustness in the Presence of User Alignment Noise

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    Augmented Reality (AR) is a technique by which computer generated signals synthesize impressions that are made to coexist with the surrounding real world as perceived by the user. Human smell, taste, touch and hearing can all be augmented, but most commonly AR refers to the human vision being overlaid with information otherwise not readily available to the user. A correct calibration is important on an application level, ensuring that e.g. data labels are presented at correct locations, but also on a system level to enable display techniques such as stereoscopy to function properly [SOURCE]. Thus, vital to AR, calibration methodology is an important research area. While great achievements already have been made, there are some properties in current calibration methods for augmenting vision which do not translate from its traditional use in automated cameras calibration to its use with a human operator. This paper uses a Monte Carlo simulation of a standard direct linear transformation camera calibration to investigate how user introduced head orientation noise affects the parameter estimation during a calibration procedure of an optical see-through head mounted display

    Advanced Calibration of Automotive Augmented Reality Head-Up Displays = Erweiterte Kalibrierung von Automotiven Augmented Reality-Head-Up-Displays

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    In dieser Arbeit werden fortschrittliche Kalibrierungsmethoden für Augmented-Reality-Head-up-Displays (AR-HUDs) in Kraftfahrzeugen vorgestellt, die auf parametrischen perspektivischen Projektionen und nichtparametrischen Verzerrungsmodellen basieren. Die AR-HUD-Kalibrierung ist wichtig, um virtuelle Objekte in relevanten Anwendungen wie z.B. Navigationssystemen oder Parkvorgängen korrekt zu platzieren. Obwohl es im Stand der Technik einige nützliche Ansätze für dieses Problem gibt, verfolgt diese Dissertation das Ziel, fortschrittlichere und dennoch weniger komplizierte Ansätze zu entwickeln. Als Voraussetzung für die Kalibrierung haben wir mehrere relevante Koordinatensysteme definiert, darunter die dreidimensionale (3D) Welt, den Ansichtspunkt-Raum, den HUD-Sichtfeld-Raum (HUD-FOV) und den zweidimensionalen (2D) virtuellen Bildraum. Wir beschreiben die Projektion der Bilder von einem AR-HUD-Projektor in Richtung der Augen des Fahrers als ein ansichtsabhängiges Lochkameramodell, das aus intrinsischen und extrinsischen Matrizen besteht. Unter dieser Annahme schätzen wir zunächst die intrinsische Matrix unter Verwendung der Grenzen des HUD-Sichtbereichs. Als nächstes kalibrieren wir die extrinsischen Matrizen an verschiedenen Blickpunkten innerhalb einer ausgewählten "Eyebox" unter Berücksichtigung der sich ändernden Augenpositionen des Fahrers. Die 3D-Positionen dieser Blickpunkte werden von einer Fahrerkamera verfolgt. Für jeden einzelnen Blickpunkt erhalten wir eine Gruppe von 2D-3D-Korrespondenzen zwischen einer Menge Punkten im virtuellen Bildraum und ihren übereinstimmenden Kontrollpunkten vor der Windschutzscheibe. Sobald diese Korrespondenzen verfügbar sind, berechnen wir die extrinsische Matrix am entsprechenden Betrachtungspunkt. Durch Vergleichen der neu projizierten und realen Pixelpositionen dieser virtuellen Punkte erhalten wir eine 2D-Verteilung von Bias-Vektoren, mit denen wir Warping-Karten rekonstruieren, welche die Informationen über die Bildverzerrung enthalten. Für die Vollständigkeit wiederholen wir die obigen extrinsischen Kalibrierungsverfahren an allen ausgewählten Betrachtungspunkten. Mit den kalibrierten extrinsischen Parametern stellen wir die Betrachtungspunkte wieder her im Weltkoordinatensystem. Da wir diese Punkte gleichzeitig im Raum der Fahrerkamera verfolgen, kalibrieren wir weiter die Transformation von der Fahrerkamera in den Weltraum unter Verwendung dieser 3D-3D-Korrespondenzen. Um mit nicht teilnehmenden Betrachtungspunkten innerhalb der Eyebox umzugehen, erhalten wir ihre extrinsischen Parameter und Warping-Karten durch nichtparametrische Interpolationen. Unsere Kombination aus parametrischen und nichtparametrischen Modellen übertrifft den Stand der Technik hinsichtlich der Zielkomplexität sowie Zeiteffizienz, während wir eine vergleichbare Kalibrierungsgenauigkeit beibehalten. Bei allen unseren Kalibrierungsschemen liegen die Projektionsfehler in der Auswertungsphase bei einer Entfernung von 7,5 Metern innerhalb weniger Millimeter, was einer Winkelgenauigkeit von ca. 2 Bogenminuten entspricht, was nahe am Auflösungvermögen des Auges liegt

    High Fidelity Immersive Virtual Reality

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    Towards Intelligent Telerobotics: Visualization and Control of Remote Robot

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    Human-machine cooperative or co-robotics has been recognized as the next generation of robotics. In contrast to current systems that use limited-reasoning strategies or address problems in narrow contexts, new co-robot systems will be characterized by their flexibility, resourcefulness, varied modeling or reasoning approaches, and use of real-world data in real time, demonstrating a level of intelligence and adaptability seen in humans and animals. The research I focused is in the two sub-field of co-robotics: teleoperation and telepresence. We firstly explore the ways of teleoperation using mixed reality techniques. I proposed a new type of display: hybrid-reality display (HRD) system, which utilizes commodity projection device to project captured video frame onto 3D replica of the actual target surface. It provides a direct alignment between the frame of reference for the human subject and that of the displayed image. The advantage of this approach lies in the fact that no wearing device needed for the users, providing minimal intrusiveness and accommodating users eyes during focusing. The field-of-view is also significantly increased. From a user-centered design standpoint, the HRD is motivated by teleoperation accidents, incidents, and user research in military reconnaissance etc. Teleoperation in these environments is compromised by the Keyhole Effect, which results from the limited field of view of reference. The technique contribution of the proposed HRD system is the multi-system calibration which mainly involves motion sensor, projector, cameras and robotic arm. Due to the purpose of the system, the accuracy of calibration should also be restricted within millimeter level. The followed up research of HRD is focused on high accuracy 3D reconstruction of the replica via commodity devices for better alignment of video frame. Conventional 3D scanner lacks either depth resolution or be very expensive. We proposed a structured light scanning based 3D sensing system with accuracy within 1 millimeter while robust to global illumination and surface reflection. Extensive user study prove the performance of our proposed algorithm. In order to compensate the unsynchronization between the local station and remote station due to latency introduced during data sensing and communication, 1-step-ahead predictive control algorithm is presented. The latency between human control and robot movement can be formulated as a linear equation group with a smooth coefficient ranging from 0 to 1. This predictive control algorithm can be further formulated by optimizing a cost function. We then explore the aspect of telepresence. Many hardware designs have been developed to allow a camera to be placed optically directly behind the screen. The purpose of such setups is to enable two-way video teleconferencing that maintains eye-contact. However, the image from the see-through camera usually exhibits a number of imaging artifacts such as low signal to noise ratio, incorrect color balance, and lost of details. Thus we develop a novel image enhancement framework that utilizes an auxiliary color+depth camera that is mounted on the side of the screen. By fusing the information from both cameras, we are able to significantly improve the quality of the see-through image. Experimental results have demonstrated that our fusion method compares favorably against traditional image enhancement/warping methods that uses only a single image
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